Gleichgerrcht Ezequiel, Munsell Brent, Keller Simon S, Drane Daniel L, Jensen Jens H, Spampinato M Vittoria, Pedersen Nigel P, Weber Bernd, Kuzniecky Ruben, McDonald Carrie, Bonilha Leonardo
Department of Neurology, Medical University of South Carolina, Charleston, SC 29425, USA.
Department of Computer Science, University of North Carolina, Chapel Hill, NC 27599, USA.
Brain Commun. 2021 Dec 8;4(2):fcab284. doi: 10.1093/braincomms/fcab284. eCollection 2022.
Temporal lobe epilepsy is associated with MRI findings reflecting underlying mesial temporal sclerosis. Identifying these MRI features is critical for the diagnosis and management of temporal lobe epilepsy. To date, this process relies on visual assessment by highly trained human experts (e.g. neuroradiologists, epileptologists). Artificial intelligence is increasingly recognized as a promising aid in the radiological evaluation of neurological diseases, yet its applications in temporal lobe epilepsy have been limited. Here, we applied a convolutional neural network to assess the classification accuracy of temporal lobe epilepsy based on structural MRI. We demonstrate that convoluted neural networks can achieve high accuracy in the identification of unilateral temporal lobe epilepsy cases even when the MRI had been originally interpreted as normal by experts. We show that accuracy can be potentiated by employing smoothed grey matter maps and a direct acyclic graphs approach. We further discuss the foundations for the development of computer-aided tools to assist with the diagnosis of epilepsy.
颞叶癫痫与反映潜在内侧颞叶硬化的MRI表现相关。识别这些MRI特征对于颞叶癫痫的诊断和管理至关重要。迄今为止,这一过程依赖于训练有素的人类专家(如神经放射科医生、癫痫专家)的视觉评估。人工智能在神经疾病的放射学评估中越来越被认为是一种有前途的辅助手段,但其在颞叶癫痫中的应用一直有限。在此,我们应用卷积神经网络基于结构MRI评估颞叶癫痫的分类准确性。我们证明,即使MRI最初被专家解读为正常,卷积神经网络在识别单侧颞叶癫痫病例时也能达到很高的准确率。我们表明,通过使用平滑灰质图和有向无环图方法可以提高准确率。我们进一步讨论了开发辅助癫痫诊断的计算机辅助工具的基础。